KnowledgeMiner Home
 
 
About KM > Book > Contents

Self-Organising Data Mining

Extracting Knowledge From Data
By Johann-Adolf Müller and Frank Lemke

Table of Contents

Preface
 
1. Knowledge Discovery from Data
1.1 Models and their application in decision making
1.2 Relevance and value of forecasts
1.3 Theory driven approach
1.4 Data driven approach
1.5 Data mining
References
 
2. Self-organising Data Mining
2.1 Involvement of users in the data mining process
2.2 Automatic model generation
2.3 Self-organising data mining
References
 
3. Self-organising Modelling Technologies
3.1 Statistical Learning Networks
3.2 Inductive approach - The GMDH algorithm
References
 
4. Parametric GMDH Algorithms
4.1 Elementary models (neurons)
4.2 Generation of alternate model variants
4.3 Nets of active neurons
4.4 Criteria of model selection
4.5 Validation
References
 
5. Nonparametric Algorithms
5.1 Objective Cluster Analysis
5.2 Analog Complexing
5.3 Self-organising Fuzzy Rule Induction
5.4 Logic based rules
References
 
6. Application of Self-organising Data Mining
6.1 Spectrum of self-organising data mining methods
6.2 Choice of appropriate modelling methods
6.3 Application fields
6.4 Synthesis
6.5 Software tools
References
 
7. KnowledgeMiner
7.1 General features
7.2 GMDH implementation
7.3 Analog Complexing implementation
7.4 Fuzzy Rule Induction implementation
7.5 Using models
 
8. Sample Applications
8.1 ... From Economics
• national economy
• stock prediction
• balance sheet
• sales prediction
• solvency checking
• energy consumption
 
8.2 ... From Ecology
• water pollution
• water quality
 
8.3 ... From other Fields
• heart disease
• U.S. congressional voting behavior
 
References
© 2001 - 2007 Script Software Intl.Site MapContact Us